Affiliation:
1. University of Massachusetts Lowell
Abstract
Extreme-scale science applications are highly innovative and constantly
evolving. They are expected to generate data in the petabyte and
exabyte ranges. Erasure coding has been widely adopted for data
storage in data center networks, where the data are encoded and stored
in multiple locations. Therefore, an efficient data retrieval service
is needed to transfer encoded data from selected multiple stored nodes
to a single destination. Elastic optical networks are a promising
backbone technology for data center communication due to their
capability to efficiently and flexibly allocate the huge optical
bandwidth to heterogeneous traffic demands. In this paper, the
erasure-coded multi-sourced data retrieval routing and scheduling
problem is studied for static traffic in elastic optical networks, and
the objective is to minimize the total transmission completion time of
all the requests. An integer linear programming formulation and
low-complexity heuristic are proposed. Furthermore, analytical lower
bounds are derived and a meta-heuristic, Tabu Search, is adopted to
solve the problem. Numerical results are presented to show the
effectiveness of the proposed methods.
Funder
National Science Foundation
Subject
Computer Networks and Communications